Synthetic Tumors Make AI Segment Tumors Better
- URL: http://arxiv.org/abs/2210.14845v1
- Date: Wed, 26 Oct 2022 16:45:19 GMT
- Title: Synthetic Tumors Make AI Segment Tumors Better
- Authors: Qixin Hu, Junfei Xiao, Yixiong Chen, Shuwen Sun, Jie-Neng Chen, Alan
Yuille, Zongwei Zhou
- Abstract summary: We develop a novel strategy to generate synthetic tumors.
The tumors are realistic in shape and texture, which even medical professionals can confuse with real tumors.
Our synthetic tumors have the potential to improve the success rate of small tumor detection.
- Score: 10.851067782021902
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We develop a novel strategy to generate synthetic tumors. Unlike existing
works, the tumors generated by our strategy have two intriguing advantages: (1)
realistic in shape and texture, which even medical professionals can confuse
with real tumors; (2) effective for AI model training, which can perform liver
tumor segmentation similarly to a model trained on real tumors - this result is
unprecedented because no existing work, using synthetic tumors only, has thus
far reached a similar or even close performance to the model trained on real
tumors. This result also implies that manual efforts for developing per-voxel
annotation of tumors (which took years to create) can be considerably reduced
for training AI models in the future. Moreover, our synthetic tumors have the
potential to improve the success rate of small tumor detection by automatically
generating enormous examples of small (or tiny) synthetic tumors.
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